Пример #1
0
def test_2Dexperiment():
    c = Config()

    c.batch_size = 200
    c.n_epochs = 40
    c.learning_rate = 0.001
    if torch.cuda.is_available():
        c.use_cuda = True
    else:
        c.use_cuda = False
    c.rnd_seed = 1
    c.log_interval = 200
    # model-specific
    c.n_coupling = 8
    c.prior = 'gauss'

    exp = SmileyExperiment(
        c,
        name='gauss',
        n_epochs=c.n_epochs,
        seed=42,
        base_dir='experiment_dir',
        loggers={'visdom': ['visdom', {
            "exp_name": "myenv"
        }]})

    exp.run()

    # sampling
    samples = exp.model.sample(1000).cpu().numpy()
    sns.jointplot(samples[:, 0], samples[:, 1])
    plt.show()
Пример #2
0
def test_MNIST_experiment():
    c = Config()

    c.batch_size = 64
    c.n_epochs = 50
    c.learning_rate = 0.001
    c.weight_decay = 5e-5
    if torch.cuda.is_available():
        c.use_cuda = True
    else:
        c.use_cuda = False
    c.rnd_seed = 1
    c.log_interval = 100
    c.subset_size = 10
    # model-specific
    c.n_coupling = 8
    c.n_filters = 64

    exp = MNISTExperiment(
        c,
        name='mnist_test',
        n_epochs=c.n_epochs,
        seed=42,
        base_dir='experiment_dir',
        loggers={'visdom': ['visdom', {
            "exp_name": "myenv"
        }]})

    exp.run()

    exp.model.eval()
    exp.model.to('cpu')
    with torch.no_grad():
        samples = exp.model.sample(16, device='cpu')
        img_grid = make_grid(samples).permute((1, 2, 0))
    plt.imshow(img_grid)
    plt.show()
    return exp.model